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Classifier Selection for Highly Imbalanced Data Streams with Minority Driven Ensemble

机译:具有少数群体驱动的高度不平衡数据流的分类器选择

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摘要

The nature of analysed data may cause the difficulty of the many practical data mining tasks. This work is focusing on two of the important research topics associated with data analysis, i.e., data stream classification as well as data analysis with imbalanced class distributions. We propose the novel classification method, employing a classifier selection approach, which can update its model when new data arrives. The proposed approach has been evaluated on the basis of the computer experiments carried out on the diverse pool of the non-stationary data streams. Their results confirmed the usefulness of the proposed concept, which can outperform the state-of-art classifier selection algorithms, especially in the case of high imbalanced data streams.
机译:分析数据的性质可能会导致许多实际数据挖掘任务的困难。这项工作集中在与数据分析相关的两个重要研究主题上,即数据流分类以及具有不平衡类分布的数据分析。我们提出了一种新颖的分类方法,即采用分类器选择方法,该方法可以在收到新数据时更新其模型。根据对非平稳数据流的各种池执行的计算机实验,对提出的方法进行了评估。他们的结果证实了提出的概念的有用性,它可以胜过最新的分类器选择算法,尤其是在高度不平衡的数据流的情况下。

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